Data Science & Prototyping Developer

Morgan McKinley
London
1 month ago
Applications closed

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Data Science & Prototyping Developer

Looking for a contract that actually lets you build cool stuff? This team is creating the next wave of AI-powered marketing analytics tools and they are seeking an inventive Data Scientist/Prototyper to bring ideas to life.

You'll take high-level concepts and turn them into real, working solutions that shape marketing decisions across a major organisation. If you love autonomy, fast prototyping and cutting-edge tech, you'll thrive here.

What you'll be doing:

  • Creating slick, high-impact dashboards using Adobe Analytics, Tableau and custom visualisations.
  • Automating manual workflows and building robust data pipelines from scratch.
  • Prototyping AI/ML models that genuinely improve how insights are generated.
  • Taking ownership of legacy analytics processes and automating them.
  • Turning business questions into clear, data-driven answers.

What you'll need:

  • 5+ years in data science/analytics engineering.
  • Strong Python, Snowflake experience and Git workflows.
  • Solid digital analytics knowledge (Adobe/GA) and strong visualisation skills.
  • Experience integrating LLMs/AI into production-ready workflows.
  • A proactive, independent mindset and the ability to explain complex ideas simply.

Highly desirable skills: CI/...

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